Deep Reinforcement Learning (DRL) has been applied successfully to many robotic applications. However, the large number of trials needed for training is a key issue. Most of existing techniques developed to improve training efficiency (e.g. imitation) target on general tasks rather than being tailored for robot applications, which have their specific context to benefit from. We propose a novel framework, Assisted Reinforcement Learning, where a classical controller (e.g. a PID controller) is used as an alternative, switchable policy to speed up training of DRL for local planning and navigation problems. The core idea is that the simple control law allows the robot to rapidly learn sensible primitives, like driving in a straight line, instea...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
Legged robots often use separate control policies that are highly engineered for traversing difficul...
Legged robots often use separate control policies that are highly engineered for traversing difficul...
Deep Reinforcement Learning (DRL) has been applied successfully to many robotic applications. Howeve...
It is crucial for robots to autonomously steer in complex environments safely without colliding with...
It is crucial for robots to autonomously steer in complex environments safely without colliding with...
It is crucial for robots to autonomously steer in complex environments safely without colliding with...
Reinforcement learning is a model-free technique to solve decision-making problems by learning the b...
Reliable indoor navigation in the presence of dynamic obstacles is an essential capability for mobil...
This thesis studies the broad problem of learning robust control policies for difficult physics-base...
This thesis studies the broad problem of learning robust control policies for difficult physics-base...
There exist several approaches to robot locomotion, ranging from more traditional hand-designed traj...
There exist several approaches to robot locomotion, ranging from more traditional hand-designed traj...
In the past few years, the field of autonomous robot has been rigorously studied and non-industrial ...
For robots to perform tasks in the unstructured environments of the real world, they must be able to...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
Legged robots often use separate control policies that are highly engineered for traversing difficul...
Legged robots often use separate control policies that are highly engineered for traversing difficul...
Deep Reinforcement Learning (DRL) has been applied successfully to many robotic applications. Howeve...
It is crucial for robots to autonomously steer in complex environments safely without colliding with...
It is crucial for robots to autonomously steer in complex environments safely without colliding with...
It is crucial for robots to autonomously steer in complex environments safely without colliding with...
Reinforcement learning is a model-free technique to solve decision-making problems by learning the b...
Reliable indoor navigation in the presence of dynamic obstacles is an essential capability for mobil...
This thesis studies the broad problem of learning robust control policies for difficult physics-base...
This thesis studies the broad problem of learning robust control policies for difficult physics-base...
There exist several approaches to robot locomotion, ranging from more traditional hand-designed traj...
There exist several approaches to robot locomotion, ranging from more traditional hand-designed traj...
In the past few years, the field of autonomous robot has been rigorously studied and non-industrial ...
For robots to perform tasks in the unstructured environments of the real world, they must be able to...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
Legged robots often use separate control policies that are highly engineered for traversing difficul...
Legged robots often use separate control policies that are highly engineered for traversing difficul...